Assessment of Analytical Orientation Prediction Models for Suspensions Containing Fibers and Spheres
Abstract
:1. Introduction
1.1. Motivation
1.2. Measuring Fiber Orientation States by Orientation Tensors
1.3. Orientation Prediction by Jeffery and Folgar Tucker
1.4. Further Analytical Orientation Prediction Models
2. Method
2.1. Suspension Simulations
2.2. Computation of FT Parameters
3. Results
3.1. Influence of the FT Model Formulation
3.2. Influence of the Flow Type
3.3. Influence of Disk Size
3.4. Comparison of Existing Data
3.5. Accuracy of FT Model in Contrast to Other Analytical Orientation Prediction Models
4. Discussion
4.1. Formulation
4.2. Underlying Flow Profile
4.3. Suspension Composition
4.4. Comparison with Literature
4.5. Accuracy of the FT Model in Comparison to Other Prediction Models
4.6. Limitation of This Work
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
2D | two-dimensional |
3D | three-dimensional |
ARD | Anisotropic Rotary Diffusion |
ARD-RSC | Anisotropic Rotary Diffusion Method with Reduced Strain Closure |
DNS | Direct Numerical Simulations |
FT | Folgar Tucker |
iARD | improved Anisotropic Rotary Diffusion |
IBOF | Invariant-based optimal fitting |
IRD | Isotropic Rotary Diffusion |
MRD | Moldflow Rotational Diffusion |
NAT | Natural Closure Approximiation |
OWR | Orthotropic Closure Approximation |
OWC | one-way coupling |
pARD | principle Anisotropic Rotary Diffusion |
RPR | Retarding Principal Rate |
RSC | Reduced Strain Closure |
RVE | Representative Volume Element |
SPH | Smoothed Particle Hydrodynamics |
TWC | two-way coupling |
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Model Name | Abbreviation | Parameters |
---|---|---|
Jeffery [16] | - | 0 |
Folgar Tucker [17] | FT | 1 |
Reduced Strain Closure [30] | RSC | 2 |
improved Anisotropic Rotary Diffusion Retarding Principal Rate [31] | iARD-RPR | 3 |
principle Anisotropic Rotary Diffusion [35] | pARD | 3 |
Principal Anisotropic Rotary Diffusion Retarding Principal Rate [35] | pARD-RPR | 3 |
Moldflow Rotational Diffusion [36] | MRD | 4 |
Anisotropic Rotary Diffusion [32] | ARD | 5 |
Anisotropic Rotary Diffusion Reduced Strain Closure [32] | ARD-RSC | 6 |
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Dietemann, B.; Bosna, F.; Kruggel-Emden, H.; Kraft, T.; Bierwisch, C. Assessment of Analytical Orientation Prediction Models for Suspensions Containing Fibers and Spheres. J. Compos. Sci. 2021, 5, 107. https://doi.org/10.3390/jcs5040107
Dietemann B, Bosna F, Kruggel-Emden H, Kraft T, Bierwisch C. Assessment of Analytical Orientation Prediction Models for Suspensions Containing Fibers and Spheres. Journal of Composites Science. 2021; 5(4):107. https://doi.org/10.3390/jcs5040107
Chicago/Turabian StyleDietemann, Bastien, Fatih Bosna, Harald Kruggel-Emden, Torsten Kraft, and Claas Bierwisch. 2021. "Assessment of Analytical Orientation Prediction Models for Suspensions Containing Fibers and Spheres" Journal of Composites Science 5, no. 4: 107. https://doi.org/10.3390/jcs5040107
APA StyleDietemann, B., Bosna, F., Kruggel-Emden, H., Kraft, T., & Bierwisch, C. (2021). Assessment of Analytical Orientation Prediction Models for Suspensions Containing Fibers and Spheres. Journal of Composites Science, 5(4), 107. https://doi.org/10.3390/jcs5040107